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Genetic Adaptive Neural Network to Predict Biochemical Failure After Radical Prostatectomy: A Multi-institutional Study

dc.contributor.authorTewari, Ashutoshen_US
dc.contributor.authorIssa, Muttaen_US
dc.contributor.authorEl-Galley, Rizken_US
dc.contributor.authorStricker, Hansen_US
dc.contributor.authorPeabody, Jamesen_US
dc.contributor.authorPow-Sang, Julioen_US
dc.contributor.authorShukla, Asimen_US
dc.contributor.authorWajsman, Zeven_US
dc.contributor.authorRubin, Mark A.en_US
dc.contributor.authorWei, Johnen_US
dc.contributor.authorMontie, James E.en_US
dc.contributor.authorDemers, Raymond Y.en_US
dc.contributor.authorJohnson, Christine C.en_US
dc.contributor.authorLamerato, Loisen_US
dc.contributor.authorDivine, George W.en_US
dc.contributor.authorCrawford, E. Daviden_US
dc.contributor.authorGamito, Eduard J.en_US
dc.contributor.authorFarah, Riaden_US
dc.contributor.authorNarayan, Perincheryen_US
dc.contributor.authorCarlson, Granten_US
dc.contributor.authorMenon, Manien_US
dc.date.accessioned2009-07-10T19:15:55Z
dc.date.available2009-07-10T19:15:55Z
dc.date.issued2001-12-01en_US
dc.identifier.citationTewari, Ashutosh; Issa, Mutta; El-Galley, Rizk; Stricker, Hans; Peabody, James; Pow-Sang, Julio; Shukla, Asim; Wajsman, Zev; Rubin, Mark; Wei, John; Montie, James; Demers, Raymond; Johnson, Christine C.; Lamerato, Lois; Divine, George W.; Crawford, E. David; Gamito, Eduard J.; Farah, Riad; Narayan, Perinchery; Carlson, Grant; Menon, Mani (2001). "Genetic Adaptive Neural Network to Predict Biochemical Failure After Radical Prostatectomy: A Multi-institutional Study." Molecular Urology 5(4): 163-169 <http://hdl.handle.net/2027.42/63438>en_US
dc.identifier.urihttps://hdl.handle.net/2027.42/63438
dc.identifier.urihttp://www.ncbi.nlm.nih.gov/sites/entrez?cmd=retrieve&db=pubmed&list_uids=11790278&dopt=citationen_US
dc.description.abstractBackground and Purpose: Despite many new procedures, radical prostatectomy remains one of the commonest methods of treating clinically localized prostate cancer. Both from the physician's and the patient's point of view, it is important to have objective estimation of the likelihood of recurrence, which forms the foundation for treatment selection for an individual patient. Currently, it is difficult to predict the probability of biochemical recurrence (rising serum prostate specific antigen [PSA] concentration) in an individual patient, and approximately 30% of the patients do experience recurrence. Tools predicting the recurrence will be of immense practical utility in the treatment selection and planning follow up. We have utilized preoperative parameters through a computer based genetic adaptive neural network model to predict recurrence in such patients, which can help primary care physicians and urologists in making management recommendations. Patients and Methods: Fourteen hundred patients who underwent radical prostatectomy at participating institutions form the subjects of this study. Demographic data such as age, race, preoperative PSA, systemic biopsy based staging and Gleason scores were used to construct a neural network model. This model simulated the functioning of a trained human mind and learned from the database. Once trained, it was used to predict the outcomes in new patients. Results: The patients in this comprehensive database were representative of the average prostate cancer patients as seen in USA. Their mean age was 68.4 years, the mean PSA concentration before surgery was 11.6 ng/mL, and 67% patients had a Gleason sum of 5 to 7. The mean length of follow-up was 41.5 months. Eighty percent of the cancers were clinical stage T2 and 5% T3. In our series, 64% of patients had pathologically organ-confined cancer, 33% positive margins, and 14% had seminal vesicle invasion. Lymph node positive patients were not included in this series. Progression as judged by serum PSA was noted in 30.6%. With entry of a few routinely used parameters, the model could correctly predict recurrence in 76% of the patients in the validation set. The area under the curve was 0.831. The sensitivity was 85%, the specificity 74%, the positive predictive value 77%, and the negative predictive value of 83%. Conclusion: It was possible to predict PSA recurrence with a high accuracy (76%). Physicians desiring objective treatment counseling can use this model, and significant cost savings are anticipated because of appropriate treatment selection and patient-specific follow-up protocols. This technology can be extended to other treatments such as watchful waiting, external-beam radiation, and brachytherapy.en_US
dc.format.extent205548 bytes
dc.format.extent2489 bytes
dc.format.mimetypeapplication/pdf
dc.format.mimetypetext/plain
dc.publisherMary Ann Liebert, Inc., publishersen_US
dc.titleGenetic Adaptive Neural Network to Predict Biochemical Failure After Radical Prostatectomy: A Multi-institutional Studyen_US
dc.typeArticleen_US
dc.subject.hlbtoplevelHealth Sciencesen_US
dc.description.peerreviewedPeer Revieweden_US
dc.identifier.pmid11790278en_US
dc.description.bitstreamurlhttp://deepblue.lib.umich.edu/bitstream/2027.42/63438/1/10915360152745849.pdf
dc.identifier.doidoi:10.1089/10915360152745849en_US
dc.identifier.sourceMolecular Urologyen_US
dc.identifier.sourceMolecular Urologyen_US
dc.owningcollnameInterdisciplinary and Peer-Reviewed


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